Towards Just Neighbourhoods: Leveraging Geospatial Data Science to Understand Night-Time Public Transport Variability in British Cities

Verduzco-Torres, J. R. , Bailey, N. and Mcarthur, D. (2023) Towards Just Neighbourhoods: Leveraging Geospatial Data Science to Understand Night-Time Public Transport Variability in British Cities. Open Tools for Equitable and Sustainable Accessibility and Mobility Analysis (OTESAMA ‘23) Workshop, Leeds, UK, 12 September 2023.

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Abstract

Working towards equitable accessibility, sustainable mobility, and the decarbonisation of transport requires a better understanding of the challenges confronted by disadvantaged populations. These communities often rely on public transport, a sustainable form of mobility that is crucial for their daily needs, including commuting to and from workplaces. In the UK, nearly nine million individuals were engaged in night-time work in 2022, with a substantial percentage occupying low-paid positions (ONS, 2023). Coupled with the significant trend of poverty suburbanising in major British cities (Bailey & Minton, 2018)—areas typically less accessible than central locations—it's critical to investigate the impacts of public transport accessibility on these demographics, particularly during off-peak hours. However, the variability of public transport services at night in British cities remains poorly understood. This raises the question: How do night-time public transport service variations impact disadvantaged urban communities? To address this question, we exploited the increased computational resources, open-source software like 'R' and the 'R5R' package (Saraiva et al., 2021), as well as open-access data. These tools enabled the computation of detailed travel time matrices, allowing us to compare public transport service variations in larger British cities. We computed travel times from each lower super output area (LSOA) in England and Wales, or data zone (DZ) in Scotland, to all others during two periods: morning peak (7-10 a.m.) and night-time (9 p.m. to midnight). Later, we stratify these changes by disadvantaged community groups and model the accessibility poverty risk in a logistic regression. Our results confirm an expected overall decrease in night-time public transport services. Specifically, all subgroups within ‘Industrious’ and ‘Hard-pressed’ communities are at higher risk of experiencing accessibility poverty at night than ‘Other groups’ in British cities. This particularly affects ‘Endeavouring social renters’ and ‘Hard-pressed flat dwellers’ who have an odds ratio almost three times that of the rest of the urban population. Moreover, the odds for 'Primary sector workers' are ninefold. The latter can be understood because primary sector workers tend to be located in the countryside. These findings underscore the importance of further understanding disadvantaged communities' dual exclusion—firstly, by their geographic locations and secondly, by limitations restricting their participation in the night-time economy via public transport. It also highlights the critical role of advances in geospatial data science, open-source software and their communities in supporting the development of effective net-zero policies for equitable neighbourhoods and sustainable communities.

Item Type:Conference or Workshop Item
Keywords:Night-time economy, equitable accessibility, sustainable transport, open tools.
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Verduzco-Torres, Dr Jose Rafael and Mcarthur, Dr David and Bailey, Professor Nick
Authors: Verduzco-Torres, J. R., Bailey, N., and Mcarthur, D.
Subjects:G Geography. Anthropology. Recreation > G Geography (General)
H Social Sciences > HE Transportation and Communications
College/School:College of Social Sciences > School of Social and Political Sciences > Urban Studies
Copyright Holders:Copyright © The Authors 2023
First Published:First published in Open Tools for Equitable and Sustainable Accessibility and Mobility Analysis Workshop 2023
Publisher Policy:Reproduced under a Creative Commons license
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Project CodeAward NoProject NamePrincipal InvestigatorFunder's NameFunder RefLead Dept
190698Urban Big Data Research CentreNick BaileyEconomic and Social Research Council (ESRC)ES/L011921/1S&PS - Urban Big Data